Wu Y, Doi K, Metz C E, Asada N, Giger M L
Kurt Rossmann Laboratories for Radiologic Image Research, Department of Radiology, University of Chicago, IL 60637.
J Digit Imaging. 1993 May;6(2):117-25. doi: 10.1007/BF03168438.
Artificial neural networks are being investigated in the field of medical imaging as a means to facilitate pattern recognition and patient classification. In the work reported here, the effects of internal structure and the nature of input data on the performance of neural networks were investigated systematically using computer-simulated data. Network performance was evaluated quantitatively by means of receiver operating characteristic analysis and compared with the performance of an ideal statistical decision maker. We found that the relatively simple neural networks investigated in this study can perform at the level of an ideal decision maker. These simple networks were also found to learn accurately even when the training data are extremely unbalanced with respect to the prevalence of actually positive cases and to differentiate input data patterns by recognizing their unique characteristics.
人工神经网络正在医学成像领域进行研究,作为一种促进模式识别和患者分类的手段。在本文报道的工作中,使用计算机模拟数据系统地研究了内部结构和输入数据的性质对神经网络性能的影响。通过接收器操作特征分析对网络性能进行定量评估,并与理想统计决策器的性能进行比较。我们发现,本研究中研究的相对简单的神经网络可以达到理想决策器的水平。还发现,即使训练数据在实际阳性病例的患病率方面极其不平衡,这些简单的网络也能准确学习,并通过识别输入数据模式的独特特征来区分它们。